README.md

3dcnn.torch

Introduction

This work is based on our arXiv tech report. Our paper will also appear as a CVPR 2016 spotlight (please refer to the arXiv one for most up-to-date results). In this repository, we release code, data for training Volumetric CNNs for object classification on 3D data (binary volume).

Installation

Note that cuDNN and GPU are required for VolumetricBatchNormalization layer.
You also need to install a few torch packages (if you haven't done so) including cudnn.troch, cunn, hdf5 and xlua.

Usage

To train a model to classify 3D object:

th train.lua

Voxelizations of ModelNet40 models in HDF5 files will be automatically downloaded (633MB). modelnet40_60x include azimuth and elevation rotation augmented occupancy grids. modelnet40_12x is of azimuth rotation augmentation only. modelnet40_20x_stack is used for multi-orientation training. There are also text files in each folder specifying the sequence of CAD models in h5 files.

To see HELP for training script:

th train.lua -h

After the above training, which trains a 3D CNN classifying object based on single input, we can then train a multi-orientation 3D CNN by initializing it with the pretrained network with single orientation input:

You need to specify at which layer to max-pool the feature in the network, it can be either set in command line by --pool_layer_idx <layer_idx> or set interactively after the script starts - the network layers and indices will be printed. For 3dnin_fc, one option is to set --pool_layer_idx 27 which will max pool the outputs of the last convolutional layer from multiple orientations pooling.

Results

Below are the classification accuracis we got on ModelNet40 test data.

Model

Single-Orientation

Multi-Orientation

voxnet

86.2% (on 12x data)

-

3dnin fc

88.8%

90.3%

subvol sup

88.8%

90.1%

ani probing

87.5%

90.0%

Note 1: Compared with the cvpr paper, we have included batch normalization and drop layers after all the convolutional layers (in caffe prototxt there are only dropouts after fc layers and no batch normalization is used). We also add small translation jittering to augment the data on the fly (following what voxnet has done). Besides the two models proposed in the paper (subvolume supervised network and anisotropic probing network), we have also found a variation of the base network used in subvolume_sup, which we call 3dnin_fc here. 3dnin_fc has a relatively simple architecture (3 mlpconv layers + 2 fc layers) and performs also very well, so we have set it as the default architecture to use in this repository.

Note 2: Numbers reported in the table above are average instance accuracy on the whole ModelNet40 test set containing 2468 CAD models from 40 categories.This different from what is on the modelnet website, which is average class accuracy on either a subset of the test set or the full test set. For direct comparison under average class accuracy metric, please refer to our paper.

You can directly get the trained model for the 3dnin fc architecture through this dowload link.

Caffe Models and Reference Results

Caffe prototxt files of models reported in the paper have been included in the caffe_models directory.

License

Our code and models are released under MIT License (see LICENSE file for details).

Acknowledgement

Torch implementation in this repository is based on the code from cifar.torch, which is a clean and nice GitHub repo on CIFAR image classification using Torch.